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O1.3. BACK TO THE FUTURE: PREDICTING POPULATION NEED FOR PSYCHOSIS CARE BASED ON THE EPIDEMIOLOGY OF PSYCHOTIC DISORDERS IN ENGLAND, AN APPLIED BAYESIAN METHODOLOGY

BACKGROUND: Providing timely, adequate and appropriately-resourced care to people experiencing their first episode of psychosis needs to be informed by evidence-based models of future need in the population. We sought to develop a validated prediction model of need for provision of early interventio...

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Autores principales: McDonald, Keltie, Ding, Tao, Dliwayo, Rebecca, Osborn, David, Wohland, Pia, French, Paul, Baio, Gianluca, Jones, Peter, Kirkbride, James
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7233863/
http://dx.doi.org/10.1093/schbul/sbaa028.002
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author McDonald, Keltie
Ding, Tao
Dliwayo, Rebecca
Osborn, David
Wohland, Pia
French, Paul
Baio, Gianluca
Jones, Peter
Kirkbride, James
author_facet McDonald, Keltie
Ding, Tao
Dliwayo, Rebecca
Osborn, David
Wohland, Pia
French, Paul
Baio, Gianluca
Jones, Peter
Kirkbride, James
author_sort McDonald, Keltie
collection PubMed
description BACKGROUND: Providing timely, adequate and appropriately-resourced care to people experiencing their first episode of psychosis needs to be informed by evidence-based models of future need in the population. We sought to develop a validated prediction model of need for provision of early intervention in psychosis [EIP] services at the small area level in England up to 2025, based on current epidemiological evidence and demographic projections of the at-risk population. METHODS: We developed a Bayesian population-level prediction tool. First, we obtained small area incidence data on first episode psychoses, aged 16–64 years, from three major empirical studies of psychosis risk (ÆSOP, ELFEP and SEPEA). Second, we identified suitable prior information from the published literature on variation in psychosis risk by age, sex, ethnicity, deprivation and cannabis use. Third, we combined this empirical data with prior beliefs in six Bayesian Poisson regression models to obtain a full characterisation of the underlying uncertainty in the form of suitable posterior distributions for the relative risks for different permutations of covariate data. Fourth, model coefficients were applied to population projections for 2017 to predict the expected incidence of psychotic disorders, aggregated to Commissioning Group [CCG] and national levels. Fifth, we compared these predictions to observed national FEP data from the NHS Mental Health Services Data Set in 2017 to establish the most valid model. Sixth, we used the best-fitting model to predict three nested indicators of need for psychosis care: (i) total annual referrals to early intervention in psychosis [EIP] for “suspected” FEP (ii) total annual cases accepted onto EIP service caseloads, and (iii) total annual new cases of probable FEP in England up until 2025, using small area population projections. RESULTS: A model with an age-sex interaction, ethnicity, small area-level deprivation, social fragmentation and regional cannabis use provided best internal and apparent validity, predicting 8112 (95% Credible Interval 7623 to 8597) individuals with FEP in England in 2017, compared with 8038 observed cases (difference: n=74; 0.94%). Apparent validity was acceptable at CCG level, and by sex and ethnicity, although we observed greater-than-expected need before 35 years old. Predicted new referrals, caseloads and probable incidences of FEP rose over the forecast period by 6.2% to 25,782, 23,187 and 9,541 new cases in 2025, respectively. DISCUSSION: Our translational epidemiological tool provides an accurate, validated method to inform planners, commissioners and providers about future population need for psychosis care at different stages of the referral pathway, based on individual and small area level determinants of need. Such tools can be used to underpin evidence-based decision-making in public mental health and resource allocation in mental health systems.
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spelling pubmed-72338632020-05-23 O1.3. BACK TO THE FUTURE: PREDICTING POPULATION NEED FOR PSYCHOSIS CARE BASED ON THE EPIDEMIOLOGY OF PSYCHOTIC DISORDERS IN ENGLAND, AN APPLIED BAYESIAN METHODOLOGY McDonald, Keltie Ding, Tao Dliwayo, Rebecca Osborn, David Wohland, Pia French, Paul Baio, Gianluca Jones, Peter Kirkbride, James Schizophr Bull Oral Session: Digital Health/Methods BACKGROUND: Providing timely, adequate and appropriately-resourced care to people experiencing their first episode of psychosis needs to be informed by evidence-based models of future need in the population. We sought to develop a validated prediction model of need for provision of early intervention in psychosis [EIP] services at the small area level in England up to 2025, based on current epidemiological evidence and demographic projections of the at-risk population. METHODS: We developed a Bayesian population-level prediction tool. First, we obtained small area incidence data on first episode psychoses, aged 16–64 years, from three major empirical studies of psychosis risk (ÆSOP, ELFEP and SEPEA). Second, we identified suitable prior information from the published literature on variation in psychosis risk by age, sex, ethnicity, deprivation and cannabis use. Third, we combined this empirical data with prior beliefs in six Bayesian Poisson regression models to obtain a full characterisation of the underlying uncertainty in the form of suitable posterior distributions for the relative risks for different permutations of covariate data. Fourth, model coefficients were applied to population projections for 2017 to predict the expected incidence of psychotic disorders, aggregated to Commissioning Group [CCG] and national levels. Fifth, we compared these predictions to observed national FEP data from the NHS Mental Health Services Data Set in 2017 to establish the most valid model. Sixth, we used the best-fitting model to predict three nested indicators of need for psychosis care: (i) total annual referrals to early intervention in psychosis [EIP] for “suspected” FEP (ii) total annual cases accepted onto EIP service caseloads, and (iii) total annual new cases of probable FEP in England up until 2025, using small area population projections. RESULTS: A model with an age-sex interaction, ethnicity, small area-level deprivation, social fragmentation and regional cannabis use provided best internal and apparent validity, predicting 8112 (95% Credible Interval 7623 to 8597) individuals with FEP in England in 2017, compared with 8038 observed cases (difference: n=74; 0.94%). Apparent validity was acceptable at CCG level, and by sex and ethnicity, although we observed greater-than-expected need before 35 years old. Predicted new referrals, caseloads and probable incidences of FEP rose over the forecast period by 6.2% to 25,782, 23,187 and 9,541 new cases in 2025, respectively. DISCUSSION: Our translational epidemiological tool provides an accurate, validated method to inform planners, commissioners and providers about future population need for psychosis care at different stages of the referral pathway, based on individual and small area level determinants of need. Such tools can be used to underpin evidence-based decision-making in public mental health and resource allocation in mental health systems. Oxford University Press 2020-05 2020-05-18 /pmc/articles/PMC7233863/ http://dx.doi.org/10.1093/schbul/sbaa028.002 Text en © The Author(s) 2020. Published by Oxford University Press on behalf of the Maryland Psychiatric Research Center. http://creativecommons.org/licenses/by-nc/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Oral Session: Digital Health/Methods
McDonald, Keltie
Ding, Tao
Dliwayo, Rebecca
Osborn, David
Wohland, Pia
French, Paul
Baio, Gianluca
Jones, Peter
Kirkbride, James
O1.3. BACK TO THE FUTURE: PREDICTING POPULATION NEED FOR PSYCHOSIS CARE BASED ON THE EPIDEMIOLOGY OF PSYCHOTIC DISORDERS IN ENGLAND, AN APPLIED BAYESIAN METHODOLOGY
title O1.3. BACK TO THE FUTURE: PREDICTING POPULATION NEED FOR PSYCHOSIS CARE BASED ON THE EPIDEMIOLOGY OF PSYCHOTIC DISORDERS IN ENGLAND, AN APPLIED BAYESIAN METHODOLOGY
title_full O1.3. BACK TO THE FUTURE: PREDICTING POPULATION NEED FOR PSYCHOSIS CARE BASED ON THE EPIDEMIOLOGY OF PSYCHOTIC DISORDERS IN ENGLAND, AN APPLIED BAYESIAN METHODOLOGY
title_fullStr O1.3. BACK TO THE FUTURE: PREDICTING POPULATION NEED FOR PSYCHOSIS CARE BASED ON THE EPIDEMIOLOGY OF PSYCHOTIC DISORDERS IN ENGLAND, AN APPLIED BAYESIAN METHODOLOGY
title_full_unstemmed O1.3. BACK TO THE FUTURE: PREDICTING POPULATION NEED FOR PSYCHOSIS CARE BASED ON THE EPIDEMIOLOGY OF PSYCHOTIC DISORDERS IN ENGLAND, AN APPLIED BAYESIAN METHODOLOGY
title_short O1.3. BACK TO THE FUTURE: PREDICTING POPULATION NEED FOR PSYCHOSIS CARE BASED ON THE EPIDEMIOLOGY OF PSYCHOTIC DISORDERS IN ENGLAND, AN APPLIED BAYESIAN METHODOLOGY
title_sort o1.3. back to the future: predicting population need for psychosis care based on the epidemiology of psychotic disorders in england, an applied bayesian methodology
topic Oral Session: Digital Health/Methods
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7233863/
http://dx.doi.org/10.1093/schbul/sbaa028.002
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